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Content-Based Video Emotion Tagging Augmented by Users’ Multiple Physiological Responses

机译:用户的多种生理反应增强了基于内容的视频情感标记

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摘要

The intrinsic interactions among a video's emotion tag, its content, and a user's spontaneous responses while consuming the video can be leveraged to improve video emotion tagging, but such interactions have not been thoroughly exploited yet. In this paper, we propose a novel content-based video emotion tagging approach augmented by users' multiple physiological responses, which are only required during training. Specifically, a better emotion tagging model is constructed by introducing similarity constraints on the classifiers from video content and multiple physiological signals available during training. Maximum margin classifiers are adopted and efficient learning algorithms of the proposed model are also developed. Furthermore, the proposed video emotion tagging approach is extended to utilize incomplete physiological signals, since these signals are often corrupted by artifacts. Experiments on four benchmark databases demonstrate the effectiveness of the proposed method for implicitly integrating multiple physiological responses, and its superior performance to existing methods using both complete and incomplete multiple physiological signals.
机译:视频的情感标签,其内容以及用户在使用视频时的自发响应之间的内在交互可以用于改善视频情感标签,但是这种交互尚未得到充分利用。在本文中,我们提出了一种新颖的基于内容的视频情感标记方法,该方法通过用户的多种生理反应加以增强,而这仅在训练期间才需要。具体地,通过从视频内容和训练期间可用的多个生理信号对分类器引入相似性约束来构建更好的情绪标签模型。采用最大余量分类器,并且还开发了该模型的有效学习算法。此外,所提出的视频情感标记方法被扩展为利用不完整的生理信号,因为这些信号经常被伪影破坏。在四个基准数据库上进行的实验证明了该方法隐式整合多种生理反应的有效性,以及使用完整和不完整的多种生理信号均优于现有方法的性能。

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